What does an artificial intelligence engineer do?

Would you make a good artificial intelligence engineer? Take our career test and find your match with over 800 careers.

Take the free career test Learn more about the career test

What is an Artificial Intelligence Engineer?

An artificial intelligence (AI) engineer designs, develops, and implements AI solutions and systems. These engineers are experts in machine learning, neural networks, natural language processing, computer vision, and other AI-related technologies. Their role involves leveraging these cutting-edge technologies to create intelligent systems that can learn from data, make predictions, recognize patterns, and solve complex problems.

AI engineers work on a wide range of applications, from virtual assistants and chatbots to autonomous vehicles, recommendation systems, and fraud detection algorithms. They are skilled in programming languages like Python or R, and they use frameworks such as TensorFlow, PyTorch, or Keras to build and train machine learning models.

What does an Artificial Intelligence Engineer do?

An artificial intelligence engineer working on his computer.

Artificial intelligence engineers are instrumental in advancing the field of artificial intelligence, contributing to breakthroughs and innovations that shape industries, improve user experiences, and drive automation across various sectors, including healthcare, finance, retail, and more. Their work plays a pivotal role in harnessing the power of AI to revolutionize how technology interacts with the world and enhances the capabilities of computer systems to perform tasks that were once exclusive to human intelligence.

Duties and Responsibilities
The duties and responsibilities of an artificial intelligence engineer can be diverse and may vary depending on the specific role and industry. However, some common tasks and responsibilities include:

  • Research and Development: Conducting research to explore and stay up-to-date with the latest AI technologies, algorithms, and methodologies.
  • AI Solution Design: Designing and architecting AI solutions to address specific business problems and requirements.
  • Data Preprocessing: Preparing and cleaning large datasets to ensure the data is suitable for training AI models.
  • Machine Learning Model Development: Developing machine learning models using algorithms such as linear regression, decision trees, support vector machines, neural networks, and others.
  • Model Training and Validation: Training AI models with the prepared datasets and validating their performance to ensure accuracy and effectiveness.
  • Hyperparameter Tuning: Optimizing model hyperparameters to achieve better performance and efficiency.
  • Natural Language Processing (NLP): Working on NLP tasks, such as sentiment analysis, text summarization, language translation, and speech recognition.
  • Computer Vision: Building computer vision models for tasks like image recognition, object detection, and facial recognition.
  • Deep Learning: Developing and implementing deep learning models for complex AI tasks that require more advanced neural networks.
  • Deployment and Integration: Integrating AI models into production systems or applications and ensuring they function effectively in real-world environments.
  • Performance Monitoring and Optimization: Monitoring the performance of AI systems, identifying bottlenecks, and optimizing performance to enhance efficiency.
  • AI Ethics and Bias Mitigation: Considering ethical implications and potential biases in AI systems and taking steps to ensure fairness and transparency.
  • Collaboration with Cross-functional Teams: Working with data scientists, software developers, and domain experts to implement AI solutions that align with business needs.
  • Testing and Debugging: Conducting rigorous testing and debugging to identify and resolve issues in AI models and applications.
  • Continuous Learning: Staying updated with the latest advancements in AI technologies and methodologies through research, attending conferences, and participating in workshops.

Types of Artificial Intelligence Engineers
Artificial intelligence engineers can specialize in various subfields within the broader realm of AI. Here are some types of AI engineers based on their specific areas of expertise:

  • Machine Learning Engineer: Focuses on designing, developing, and implementing machine learning models and algorithms to enable systems to learn from data and make predictions.
  • Natural Language Processing (NLP) Engineer: Specializes in developing algorithms and systems that enable computers to understand, interpret, and generate human language.
  • Computer Vision Engineer: Works on building computer vision systems that enable computers to interpret and understand visual information from images or videos.
  • Speech Recognition Engineer: Focuses on developing systems that can recognize and process human speech for applications like virtual assistants and speech-to-text conversion.
  • Reinforcement Learning Engineer: Specializes in reinforcement learning algorithms, which involve training agents to make decisions based on trial and error and rewards.
  • Deep Learning Engineer: Expertise lies in designing and implementing deep neural networks for complex AI tasks that require multiple layers of processing.
  • Autonomous Systems Engineer: Works on developing AI-powered systems capable of performing tasks autonomously, such as autonomous vehicles and drones.
  • AI Ethics Engineer: Focuses on addressing ethical challenges and potential biases in AI systems to ensure fairness, transparency, and responsible AI development.
  • AI Infrastructure Engineer: Specializes in building and optimizing the infrastructure required to support AI systems, including high-performance computing and distributed systems.
  • AI Research Scientist: Conducts cutting-edge research to advance the field of AI, exploring new algorithms, techniques, and applications.
  • Cognitive Computing Engineer: Works on developing systems that can mimic human cognitive abilities, such as reasoning and problem-solving.
  • AI Integration Engineer: Focuses on integrating AI solutions into existing software and systems, ensuring seamless functionality and performance.
  • AI Product Manager: Manages the development and deployment of AI products, coordinating cross-functional teams and understanding customer needs.
  • AI Consultant: Provides expert advice and guidance on AI strategies, implementation, and best practices to businesses and organizations.

Artificial intelligence engineers have distinct personalities. Think you might match up? Take the free career test to find out if artificial intelligence engineer is one of your top career matches. Take the free test now Learn more about the career test

What is the workplace of an artificial intelligence engineer like?

The workplace of an artificial intelligence engineer can vary significantly based on their specific industry, company size, and role within the organization. One common work environment for AI engineers is tech companies and startups that specialize in AI development. Here, the atmosphere is often fast-paced and innovative, offering opportunities to work on cutting-edge projects and collaborate with other AI experts. These workplaces are driven by a passion for pushing the boundaries of AI technology and creating groundbreaking solutions that can impact various industries.

AI engineers may also find themselves working in research institutions and universities. In these settings, they contribute to advancing AI technology by participating in research projects, conducting experiments, and publishing research papers. The focus is on exploring new AI concepts and algorithms to push the field forward. Additionally, large tech corporations such as Google, Microsoft, Amazon, and IBM employ AI engineers to work on diverse AI-related products and services. These companies offer sophisticated AI infrastructure and resources, providing AI engineers with the tools they need to develop and deploy AI solutions at scale.

Government agencies and defense organizations also employ AI engineers to work on applications such as national security, healthcare, and public services. In the finance and banking sectors, AI engineers contribute to fraud detection, risk assessment, and algorithmic trading. Similarly, AI engineers play a vital role in the healthcare and biotech industries, working on medical imaging analysis, drug discovery, and personalized medicine.

The workplace of an AI engineer often includes access to powerful computing resources, cloud platforms, and AI frameworks that enable them to build and train machine learning models efficiently. They may work in team environments, collaborating with data scientists, software developers, and domain experts to implement AI solutions that meet business needs. Networking is also crucial in this field, and AI engineers may attend conferences, workshops, and AI-related events to stay updated with the latest advancements and research in the AI community.

Frequently Asked Questions

Engineering Specializations and Degrees



Continue reading

See Also
Engineer Aerospace Engineer Agricultural Engineer Biochemical Engineer Biofuel Engineer Biomedical Engineer Chemical Engineer Civil Engineer Electrical Engineer Environmental Engineer Flight Engineer Geotechnical Engineer Geothermal Engineer Computer Hardware Engineer Industrial Engineer Marine Engineer Mechanical Engineer Mechatronics Engineer Mining and Geological Engineer Nanosystems Engineer Nanotechnology Engineer Nuclear Engineer Petroleum Engineer Photonics Engineer Power Engineer Product Safety Engineer Robotics Engineer Sales Engineer Security Engineer Ship Engineer Software Engineer Software Quality Assurance Engineer Systems Engineer Water Engineer Wind Energy Engineer Structural Engineer Locomotive Engineer Control Engineer Laser Engineer Optical Engineer Live Sound Engineer Digital Remastering Engineer Recording Engineer Industrial Engineering Technician Automotive Engineer Architectural Engineer Data Engineer Construction Engineer Manufacturing Engineer Machine Learning Engineer Civil Engineering Technician Mechanical Engineering Technician Automotive Engineering Technician Paper Science Engineer Solar Engineer Fuel Cell Engineer Pulp and Paper Engineer Mixing Engineer Mastering Engineer Game Audio Engineer Computer Engineer Electronics Engineer Stationary Engineer Water Resources Engineer Transportation Engineer Coastal Engineer Urban Planning Engineer Audio Engineer Broadcast Engineer Fuel Cell Technician Naval Engineer Ocean Engineer Cloud Engineer Automation Engineer Natural Language Processing Engineer Computer Vision Engineer Big Data Engineer

Software Developer / Software Engineer Careers and Degrees



Continue reading

Artificial Intelligence Engineers are also known as:
AI Engineer